Cotton Crop Disease Detection using Machine Learning via Tensorflow

  • Nimra Pechuho Miss
  • Qaisar Khan Mr
  • Shoaib Kalwar
Keywords: Deep learning, Disease detection, Image classification, Machine learning, Transfer learning.

Abstract

 

World population is expected to be 10 billion in 2050. With more mouths to feed, agriculture needs to boost up to meet the food requirements. However, developing countries like Pakistan has seen a decline in their production of the crops. One of the main reasons behind declined in the production of the cotton crop is the damage caused by cotton diseases. Our model is giving farmers an easy and efficient method to diagnose cotton diseases and will recommend the usage of pesticides. It is based on machine learning, which learns with every use. Agriculture needs innovative ideas to increase its yield. CottonCare (Cotton Crop Disease Detection using Deep Learning via TensorFlow) is also one of the steps to integrate artificial intelligence into agriculture. The goal of this project is to help the farmers in decreasing the production cost and achieving the higher yield, which is also going to contribute to the country’s economy.

Author Biographies

Nimra Pechuho, Miss

Miss Nimra Pechuho is an undergarduate student currently pursuing her Bachelor's degree (BE) in final year in  Electronic Engineering from Mehran University of Engineering and Technology SZAB campus ,Pakistan

Qaisar Khan, Mr

Mr Qaisar khan is a garduate in BE Electronic Engineering from Mehran University of Engineering and Technology SZAB campus ,Pakistan

Shoaib Kalwar

Mr Shoaib Kalwar is a garduate in BE Electronic Engineering from Mehran University of Engineering and Technology SZAB campus ,Pakistan

Published
2020-09-23
How to Cite
[1]
N. Pechuho, Q. Khan, and S. Kalwar, “Cotton Crop Disease Detection using Machine Learning via Tensorflow”, PakJET, vol. 3, no. 2, pp. 126-130, Sep. 2020.